Unveiling personality traits through Bangla speech using morlet wavelet transformation and soft-voting classifier
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Date
2023-12Publisher
Brac UniversityAuthor
Sk, Md. Sajeebul IslamMetadata
Show full item recordAbstract
Speech serves as a potent medium for expressing a wide array of psychologically
significant attributes. While earlier research on deducing personality traits from
user-generated speech predominantly centered on other languages, there is a noticeable
absence of prior studies and datasets for automatically assessing user personalities
from Bangla speech. In this paper, the speaker’s objective is to bridge the
research gap by generating speech samples, each imbued with distinct personality
profiles. These personality impressions are subsequently linked to OCEAN (Openness,
Conscientiousness, Extroversion, Agreeableness, and Neuroticism) NEO-FFI
personality traits. To gauge accuracy, human evaluators, unaware of the speaker’s
identity, assess these five personality factors. The dataset is predominantly composed
of around 90% content sourced from online Bangla newspapers, with the
remaining 10% originating from renowned Bangla novels. We perform feature level
fusion by combining MFCCs with LPC features to set MELP and MEWLP features.
We introduce MoMF feature extraction method by transforming Morlet wavelet and
fusing MFCCs feature. We develop two soft voting ensemble models, DistilRo (based
on DistilBERT and RoBERTa) and BiG (based on Bi-LSTM and GRU), for personality
classification in speech-to-text and speech modalities respectively. The DistilRo
model has gained F-1 score 89% in speech-to-text and the BiG model has gained
F-1 score 90% in speech.